Materials Map

Discover the materials research landscape. Find experts, partners, networks.

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The Materials Map is an open tool for improving networking and interdisciplinary exchange within materials research. It enables cross-database search for cooperation and network partners and discovering of the research landscape.

The dashboard provides detailed information about the selected scientist, e.g. publications. The dashboard can be filtered and shows the relationship to co-authors in different diagrams. In addition, a link is provided to find contact information.

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Materials Map under construction

The Materials Map is still under development. In its current state, it is only based on one single data source and, thus, incomplete and contains duplicates. We are working on incorporating new open data sources like ORCID to improve the quality and the timeliness of our data. We will update Materials Map as soon as possible and kindly ask for your patience.

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in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (29/29 displayed)

  • 2023Autonomous Monitoring of Breathing Debonds in Bonded Composite Structures Using Nonlinear Ultrasonic Signalscitations
  • 2023Deep learning for automatic assessment of breathing-debonds in stiffened composite panels using non-linear guided wave signals19citations
  • 2022Acoustic emission data based deep learning approach for classification and detection of damage-sources in a composite panel100citations
  • 2022Multi step structural health monitoring approaches in debonding assessment in a sandwich honeycomb composite structure using ultrasonic guided waves33citations
  • 2022Low-velocity impact source localization in a composite sandwich structure using a broadband piezoelectric sensor network18citations
  • 2022Electromechanical impedance based debond localisation in a composite sandwich structure10citations
  • 2022Ultrasonic guided wave-based debond identification in a GFRP plate with L-stiffener13citations
  • 2021Bag of visual words based machine learning framework for disbond characterisation in composite sandwich structures using guided waves21citations
  • 2021Guided Wave Propagation and Breathing-Debond Localization in a Composite Structure1citations
  • 2021Ultrasonic Guided Wave Signal Based Nondestructive Testing of a Bonded Composite Structure Using Piezoelectric Transducers14citations
  • 2020Nonlinear elastic wave propagation and breathing-debond identification in a smart composite structure19citations
  • 2019Guided wave based nondestructive analysis of localized inhomogeneity effects in an advanced sandwich composite structure19citations
  • 2019Nondestructive analysis of core-junction and joint-debond effects in advanced composite structure20citations
  • 2019Nondestructive analysis of debonds in a composite structure under variable temperature conditions12citations
  • 2019Ultrasonic Lamb wave-based debonding monitoring of advanced honeycomb sandwich composite structures28citations
  • 2019Effects of debonding on Lamb wave propagation in a bonded composite structure under variable temperature conditions36citations
  • 2019Ultrasonic guided wave propagation in a repaired stiffened composite panel1citations
  • 2019A generic framework for application of machine learning in acoustic emission-based damage identification11citations
  • 2019Damage-induced acoustic emission source monitoring in a honeycomb sandwich composite structure65citations
  • 2019Multi-level nondestructive analysis of joint-debond effects in sandwich composite structure11citations
  • 2018Damage-induced acoustic emission source identification in an advanced sandwich composite structure30citations
  • 2018Online detection of barely visible low-speed impact damage in 3D-core sandwich composite structure47citations
  • 2018Study of disbond effects in a jointed composite structure under variable ambient temperatures2citations
  • 2016Identification of disbond and high density core region in a honeycomb composite sandwich structure using ultrasonic guided waves70citations
  • 2016Guided wave propagation in a honeycomb composite sandwich structure in presence of a high density core22citations
  • 2016Ultrasonic guided wave propagation and disbond identification in a honeycomb composite sandwich structure using bonded piezoelectric wafer transducers27citations
  • 2016Study of guided wave propagation in a honeycomb composite sandwich plate in presence of a high-density core region using surface-bonded piezoelectric transducerscitations
  • 2014Wave Propagation in a Honeycomb Composite Sandwich Structure in the Presence of High-Density Core Using Bonded PZT-Sensors2citations
  • 2013Detection of disbond in a honeycomb composite sandwich structure using ultrasonic guided waves and bonded PZT sensorscitations

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Chart of shared publication
Ostachowicz, Wiesław
10 / 17 shared
Kundu, Abhishek
5 / 10 shared
Liu, Dianzi
1 / 5 shared
Malinowski, Paweł
3 / 10 shared
Balasubramaniam, Kaleeswaran
3 / 3 shared
Soman, Rohan
1 / 2 shared
Banerjee, Sauvik
9 / 11 shared
Mirgal, Paresh
2 / 2 shared
Singh, Shishir Kumar
1 / 2 shared
Malinowski, Pawel H.
2 / 2 shared
Wandowski, Tomasz
1 / 5 shared
Pal, Joy
2 / 2 shared
Kersemans, Mathias
2 / 104 shared
Paepegem, Wim Van
2 / 64 shared
Fiborek, Piotr
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Van Paepegem, Wim
1 / 489 shared
Ostachowicz, Wieslaw
3 / 5 shared
Jurek, Michal
1 / 1 shared
Kudela, Pawel
3 / 4 shared
Navaratne, Rukshan
1 / 3 shared
Eaton, Mark
1 / 10 shared
Radzieński, Maciej
1 / 1 shared
Ashish, G.
1 / 1 shared
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Co-Authors (by relevance)

  • Ostachowicz, Wiesław
  • Kundu, Abhishek
  • Liu, Dianzi
  • Malinowski, Paweł
  • Balasubramaniam, Kaleeswaran
  • Soman, Rohan
  • Banerjee, Sauvik
  • Mirgal, Paresh
  • Singh, Shishir Kumar
  • Malinowski, Pawel H.
  • Wandowski, Tomasz
  • Pal, Joy
  • Kersemans, Mathias
  • Paepegem, Wim Van
  • Fiborek, Piotr
  • Van Paepegem, Wim
  • Ostachowicz, Wieslaw
  • Jurek, Michal
  • Kudela, Pawel
  • Navaratne, Rukshan
  • Eaton, Mark
  • Radzieński, Maciej
  • Ashish, G.
OrganizationsLocationPeople

document

Autonomous Monitoring of Breathing Debonds in Bonded Composite Structures Using Nonlinear Ultrasonic Signals

  • Sikdar, Shirsendu
Abstract

<p>This study aims to develop a structural health monitoring model that autonomously assesses breathing-type debonds between the base plate and stiffener in lightweight composite structures. The approach utilizes a specifically designed deep learning architecture that employs nonlinear ultrasonic signals for automatic debond assessment. To achieve this, a series of laboratory experiments were conducted on multiple composite panels with and without base plate-stiffener debonds. A network of piezoelectric transducers (actuators/sensors) was used to collect time-domain guided wave signals from the composite structures. These signals, representing nonlinear signatures such as higher harmonics, were separated from the raw signals and transformed into time-frequency scalograms using continuous wavelet transforms. A convolutional neural network-based deep learning architecture was designed to extract discrete image features automatically, enabling the characterization of composite structures under healthy and variable breathing-debond conditions. The proposed deep learning-assisted health monitoring model exhibits promising potential for autonomous inspection with high accuracy in complex structures that experience breathing-debonds.</p>

Topics
  • experiment
  • composite
  • ultrasonic